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Computationally efficient scoring of activity using demographics and connectivity of entities

机译:使用人口统计和实体连接性以有效方式对活动进行计分

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Consider a collection of entities, where each may have some demographic properties, and where the entities may be linked in some kind of, perhaps social, network structure. Some of these entities are "of interest"-we call them active. What is the relative likelihood of each of the other entities being active? AFDL, Activity from Demographics and Links, is an algorithm designed to answer this question in a computationally-efficient manner. AFDL is able to work with demographic data, link data (including noisy links), or both; and it is able to process very large datasets quickly. This paper describes AFDL's feature extraction and classification algorithms, gives timing and accuracy results obtained for several datasets, and offers suggestions for its use in real-world situations.
机译:考虑一个实体集合,每个实体可能具有某些人口统计属性,并且这些实体可能以某种类型的社交网络结构链接在一起。这些实体中有些是“有趣的”,我们称它们为活跃实体。每个其他实体处于活动状态的相对可能性是多少? AFDL(来自“人口统计和链接”的活动)是一种算法,旨在以高效计算的方式回答此问题。 AFDL可以处理人口统计数据,链接数据(包括嘈杂的链接)或同时使用两者;并且能够快速处理非常大的数据集。本文介绍了AFDL的特征提取和分类算法,给出了从多个数据集获得的时序和准确性结果,并为其在实际情况下的使用提供了建议。

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